Technical field
[0001] The present invention relates to a method of predictive yaw stability control of
a vehicle in accordance with the preamble of claim 1.
[0002] The present invention also relates to a system of predictive yaw stability control
of a vehicle in accordance with the preamble of claim 5.
Background of the invention
[0003] According to recent studies, in motorized countries about half of all fatal accidents
are single vehicle crashes. Studies also show that unintentional roadway departures
accounts for the highest share of these traffic related fatalities.
[0004] The automotive industry has developed active safety systems that aim to prevent or
mitigate accidents. One example is yaw stability control systems that assist the driver
in regaining control of the vehicle. Yaw stability control systems have proven to
be very efficient in reducing the amount of fatalities in traffic.
[0005] In understeer, a conventional yaw stability control system typically applies the
brake of the inner rear wheel of a vehicle in order to generate additional yaw moment.
However, the available friction force in such a situation is low between the inner
rear wheel and the road since much of the vehicle's weight is redistributed to the
outer side. The influence of the brake intervention is thus limited and if the understeer
is severe, available brake force may not be sufficient to keep the vehicle on the
road.
[0006] Furthermore, if the driver of a vehicle equipped with a conventional yaw stability
control system does not behave well, due to e.g. panic, the vehicle may leave the
road, as it is common that vehicle motion reaches the limit of adhesion between tyre
and road due to panic reactions of the driver.
[0007] In conventional yaw stability control systems loss of control may be identified by
e.g. considering the vehicle slip angle β. The slip angle β is illustrated in figure
1, which shows a single track vehicle model, and is defined as the angle of the velocity
vector in the vehicle's coordinate system. If the slip ange β is large, turning the
steering wheel will create little or no yaw moment on the vehicle. The possibility
to control the vehicle through the steering wheel will then be limited. One of the
main tasks of a yaw stability control system is thus to make sure that the slip angle
β remains low. How low it needs to be depends on available friction, in general it
may be said that a higher slip angle β may be allowed if much friction is available.
[0008] Unfortunately it is normally not possible to measure the slip angle β with sensors
available in conventional vehicles. Estimation algorithms may be useful in special
conditions like e.g. during full braking, however in the general case, estimation
of the slip angle β may be quite uncertain.
[0009] Another measure is therefore used in conventional yaw stability control systems that
consider the vehicle's yaw rate to identify when the driver has lost control and needs
assistance. This measure, or the threat assessment and control principle that is based
on it, may be viewed in different ways. The threat assessment may e.g. be seen as
a comparison between the vehicle's actual trajectory and an interpretation of the
trajectory that the driver intends to follow. If the difference between the driver's
intentions and the vehicle's actual movement becomes too large the system decides
to assist the driver in following the intended trajectory.
[0010] Interpretation of the driver's intentions is done by feeding the driver's input,
i.e. steering angle through a simplified vehicle model with the assumption that it
corresponds to the driver's perception of a vehicle's behavior. The simplified vehicle
model that is used to compute the intended, or equivalently the reference trajectory
in conventional yaw stability control systems is normally a single track vehicle model,
according to figure 1. In the simplified model the lateral tyre force at each tyre
is approximated to be linearly related to the tyre slip angle, α . With this view,
one may say that the conventional yaw stability control system aims at making the
car follow the driver's intentions.
Summary of the invention
[0011] One object of the invention is to provide an improved method of predictive yaw stability
control of a vehicle.
[0012] This object is achieved by the method as claimed in claim 1.
[0013] Thanks to the provision of the steps of: initiating simulation starting from a measured
state of the vehicle at that specific time instant; acquiring information on the road
ahead to be travelled during a predetermined time period; simulating the vehicle's
motion along a future path on the road ahead during the predefined time period; calculating
one or more indicators of the vehicles predicted yaw stability during the simulated
motion along the future path on the road ahead during the predefined time period;
evaluating the calculated indicators to establish if the vehicle is about to lose
control; and, if established that the vehicle is about to lose control, signaling
this to an on-board yaw stability system, a method is provided which allows for earlier
intervention by the yaw stability control system, or to prepare vehicle actuators
for intervention using the yaw stability control system.
[0014] A further object of the invention is to provide an improved system of predictive
yaw stability control of a vehicle.
[0015] This object is achieved by the system as claimed in claim 5.
[0016] Thanks to the provision of: means for initiating simulation starting from a measured
state of the vehicle at that specific time instant; means for acquiring information
on the road ahead to be travelled during a predetermined time period; means for simulating
the vehicle's motion along a future path on the road ahead during the predefined time
period; means for calculating one or more indicators of the vehicles predicted yaw
stability during the simulated motion along the future path on the road ahead during
the predefined time period; means for evaluating the calculated indicators to establish
if the vehicle is about to lose control; and, means for, if established that the vehicle
is about to lose control, signaling this to an on-board yaw stability system, an improved
system is provided which allows for earlier intervention by the yaw stability control
system, or to prepare vehicle actuators for intervention using the yaw stability control
system.
[0017] Preferred embodiments are listed in the dependent claims.
Description of drawings
[0018] In the following, the invention will be described in greater detail by way of example
only with reference to attached drawings, in which
Fig. 1 is a schematic illustration of a single track vehicle model,
Fig. 2 illustrates schematically a first part of a double track vehicle model, with
static load transfer, and
Fig. 3 illustrates schematically a second part of a double track vehicle model, with
static load transfer,
[0019] Still other objects and features of the present invention will become apparent from
the following detailed description considered in conjunction with the accompanying
drawings. It is to be understood, however, that the drawings are designed solely for
purposes of illustration and not as a definition of the limits of the invention, for
which reference should be made to the appended claims. It should be further understood
that the drawings are not necessarily drawn to scale and that, unless otherwise indicated,
they are merely intended to conceptually illustrate the structures and procedures
described herein.
Description of embodiments
[0020] The present invention relates to the possibility of predicting vehicle loss of control
using information about the host vehicle's state and the road ahead. Information about
the host vehicle's state is provided through measurements by on-board systems and
sensors providing information on e.g. the host vehicle's speed and yaw rate. Information
regarding the road ahead, i.e. the future geometrical path of the road, may be acquired
from on-board systems, e.g. sensor systems such as vision systems (cameras), LIDAR
(Light Detection And Ranging) systems, RADAR (RAdio Detection And Ranging) systems
and/or from digital map systems such as a GPS system (Global Positioning System) or
similar.
[0021] Utilization of a threat assessment algorithm is proposed, using which it is possible
to predict e.g. powerful oversteer and/or understeer situations. The proposed threat
assessment algorithm is also less dependant on the driver's skills than prior art
conventional yaw stability control systems.
[0022] Predicting e.g. understeer before it actually occurs enables the possibility of earlier
intervention, or to prepare vehicle actuators for an intervention using a conventional
yaw stability control system. Issuing an intervention a little bit earlier might make
the difference, so that the vehicle maintains control and stays on the road instead
of running of the road in a fatal or severe accident. E.g. if brake intervention is
issued earlier, before available friction at an inner rear wheel is reduced, it will
have a more significant effect and will thus increase the possibility for the vehicle
to stay on the road.
[0023] Over and understeer situations are results of vehicle state, vehicle properties and
driver behavior. When the over or understeer becomes large enough, drivers are normally
disturbed. As the over or understeer grows and becomes more evident, normal drivers
will feel that they are not able to control their vehicle. If the vehicle is equipped
with a yaw stability control system it will issue an intervention that assists the
drivers and helps them regain control. These situations occur when the vehicle is
operated in the region where the tyre forces nonlinear characteristics become evident.
Such situations, in which maneuverability of the vehicle is reduced, are referred
to herein as situations where the driver has lost control. This means that in a situation
where the vehicle is driven in the nonlinear region of the tyres, the driver is considered
to have lost control, even if the driver is skilled and has intentionally provoked
the situation.
[0024] In order to address limitations in conventional yaw stability control, utilization
of an algorithm based on predictions that assess whether the vehicle is about to lose
control within a predetermined time horizon or time period is proposed. This is done
by simulating the vehicles motion along its future path and evaluating key indicators
in order to assess the vehicles yaw stability.
[0025] An indicator that is interesting to evaluate is e.g. the predicted difference Δ ψ̇
between a reference yaw rate ψ̇
ref and the vehicles predicted yaw rate ψ̇, i.e. Δψ̇ = ψ̇
ref -ψ̇
.
[0026] The reference yaw rate ψ̇
ref is acquired through feeding the steering input δ through a single track vehicle model,
se e.g. figure 1. The calculation of the reference yaw rate ψ̇
ref may be performed in the same manner as in conventional yaw control systems.
[0027] The predicted yaw rate ψ̇ is acquired by simulating the vehicle's motion with a more
detailed vehicle model as compared to the single track vehicle model used in conventional
yaw control.
[0028] The level of detail in the modeled vehicle dynamics needs to be high enough to capture
relevant information about the stability of the vehicle. The model used here is a
double track vehicle model, with static load transfer, as illustrated in figures 2
and 3. However, any vehicle model providing a sufficient level of detail in the modeled
vehicle dynamics to capture relevant information about the stability of the vehicle
may be used.
[0030] Where
Jω is the wheel inertia and the rest of the notation is defined according to figures
2 and 3. The forces denoted
f are expressed in the tyres coordinate system while they are denoted
F when expressed in the vehicle frame. The forces are calculated in the tyres coordinate
system and a coordinate transformation is applied when they are expressed in the vehicle
frame. In the above equations the self aligning torque is neglected.
[0031] The magic tyre formula, well known to the person skilled in the art, is used to calculate
the tyre forces. In its general form the formula may be expressed:

with
Y as either longitudinal or lateral tyre force and
X as either longitudinal or lateral slip. The formula is a curve fitting and
B,C,D and
E are non dimensional parameters that depend on the vertical load. Using the magic
tyre formula the forces are calculated for pure slip conditions, i.e. the interaction
of lateral and longitudinal force is neglected. The combined slip effects are therefore
taken into account according to:

[0032] With f
x0,f
y0 as the tyre forces under pure slip conditions,
Gxα,Gxκ as weighting functions, S
Vyκ the κ-induced slip force and
fx,fy as the tyre forces under combined slip conditions. The influence of the camber angle
is not taken into account.
[0033] The vertical load or normal force at each tyre is calculated according to:

where
g denotes gravitational acceleration, Δ
Fzlong denotes longitudinal load transfer and Δ
Fzflat, Δ
Fzrlat denotes lateral load transfer. The load transfer is calculated using a static relation
as:

with
Rsf and R
sr as the roll stiffness distribution at the front and rear axles and the rest of the
notation according to figures 2 and 3. The tyre loads are calculated assuming a fix
position of the roll axis, a constant roll stiffness distribution and an infinitely
stiff chassis.
[0035] A large value for the predicted difference Δψ̇ between a reference yaw rate ψ̇
ref and the vehicles predicted yaw rate ψ̇ is acquired when loss of control is predicted.
This happens when the vehicle is operated in the nonlinear region of the tyres. By
considering the maximum predicted difference Δψ̇
max between a reference yaw rate ψ̇
ref and the vehicles predicted yaw rate ψ̇ as an indicator an assessment is made of whether
loss of control is imminent. The threshold value for the maximum predicted difference
Δψ̇
max between a reference yaw rate ψ̇
ref and the vehicles predicted yaw rate ψ̇ may be set through tuning.
[0036] However, even if full measurements of the vehicle's state and the geometry of the
road would be known, there will still be an uncertainty about the driver's future
behavior. In a situation where a vehicle is e.g. approaching a curve at high speed,
it is difficult for an active safety system to know whether the driver intends to
slow down before entering the curve. In order to be able to simulate the vehicle's
future motion the assumptions are made such that the driver tries to stay on the road
without losing control. The driver's behavior is therefore modeled as follows.
[0037] The drivers control inputs are considered to be the wheel angle at the front wheels
δ and applied wheel torque
T . In a conventional vehicle the driver applies brake torque via a brake pedal, the
wheel torque
T is therefore distributed with a fixed ratio between the front and the rear wheels.
[0038] In alignment with the assumption that the driver tries to avoid losing control, in
each simulation brake torque is applied so that the vehicle's speed is reduced. Since
the tyres are much easier to stop than the vehicle, applying too much torque in an
uncontrolled manner might result in locking the wheels without stopping the vehicle.
In most modern cars this would cause the ABS system (Anti-lock Braking System) to
intervene. In order to avoid this, the braking behavior of the driver is modeled as
a PI controller with torque,
T as the control signal and desired longitudinal slip, κ as reference.
[0039] The control error is defined as the difference between the reference slip and the
slip at the wheel that has least vertical load. This is because the wheel with least
vertical load is also the wheel where the absolute value of the longitudinal slip
is largest, the longitudinal slip at the other wheels will thus have a lower absolute
value. By introducing the PI controller, vehicle speed may be smoothly reduced without
locking any of the wheels.
[0040] The longitudinal slip reference is chosen so that it is high enough for the velocity
to be reduced but not so high that the braking has a too significant impact on the
acquired side force when cornering. The choice of longitudinal slip reference is thus
the result of a balancing between reducing velocity and maintaining side force. The
optimal choice depends on the situation and is normally subject to tuning. A system
for assessing the driver whilst driving for providing the longitudinal slip reference
may be provided.
[0041] The steering behavior of the driver on the other hand is modeled as a PID controller,
with front wheel angle, δ as control signal and the future geometrical path as reference.
The control error is defined as the distance between the vehicle's center of gravity
and the reference.
[0042] With the above assumptions, the proposed algorithms is thus to simulate the vehicles
future motion at each time sample and repeat the simulation with a predefined time
interval. Each simulation is initiated with the measured state of the vehicle at that
specific time instant. As part of each simulation the maximum predicted difference
Δψ̇
max between a reference yaw rate ψ̇
ref and the vehicles predicted yaw rate ψ̇ is calculated, evaluated and an assessment
is made of whether the vehicle is about to lose control or not.
[0043] The proposed algorithm has been verified through experimental testing on a test track.
It has been verified that the algorithm predicts understeer situations well before
they occur. The value of the indicator Δψ̇
max, i.e. the maximum predicted difference between a reference yaw rate ψ̇
ref and the vehicles predicted yaw rate ψ̇, is increased when an understeer is imminent.
In addition it has been found that this value remains low when no loss of control
is in range.
[0044] Thus, it has been shown that powerful understeer may be predicted, using relatively
simple assumptions about a drivers future behaviour if the future geometrical path
of the vehicle is known.
[0045] The information from the proposed algorithm may be used in several ways. The indicator
Δψ̇
max may be used to issue interventions by a separate yaw controller or as a weighted
part in the control error of a conventional yaw stability system. A simple thing such
as having the brakes prepared when the conventional yaw control decides to intervene
might save enough time, e.g. 300ms, to make the difference between ending up in a
severe accident or staying on the road.
[0046] The future geometrical path of the vehicle may be predefined. In practice however
this is not the case and one may instead assume that the driver tries to follow the
middle of the lane. If the lane is not particularly wide this is a good approximation
since the possible variations in the vehicles path while staying in the lane is small.
[0047] For wide roads additional assumptions may be made about the driver's behavior. The
driver may be assumed to be skilled and cuts the curves.
[0048] Another approach is to assume an optimal driver. Assuming an optimal driver leads
to quite conservative simulations that will predict loss of control only once it has
become inevitable with the control possibilities available for the driver. Depending
on the type of intervention that is intended the conservative approach might or might
not be beneficial.
[0049] For less severe interventions like preparing the brakes, controlling the vehicles
speed by means of brakes or throttle and even using the brakes to create additional
yaw moment the conservativeness is not as critical.
[0050] The thresholds for when a system based on the proposed method should intervene is
a parameter that may be subject to tuning in the balancing of not failing to predict
loss of control when it occurs, while avoiding false alarms.
[0051] Several thresholds may be defined, in which the severity if the intervention issued
by such a system is gradually increased.
[0052] The friction coefficient µ is an important parameter, especially since it is on slippery
roads that the proposed indicator is envisioned to have the greatest benefit. Thus,
a friction estimator should preferably be available allowing for the friction to be
known, at least at the point where the simulation is started.
[0053] Thus, in accordance with the present invention a method of predictive yaw stability
control of a vehicle is suggested. Simulation is initiated starting from a measured
state of the vehicle at that specific time instant, which information may be provided
through measurements by on-board systems and sensors providing information on e.g.
vehicle speed and vehicle yaw rate.
[0054] Information is acquired on the road ahead to be travelled during a predetermined
time period, which time period should be of sufficient length to allow for preemptive
yaw stability actions, e.g. up to approximately two seconds.
[0055] In one embodiment he step of acquiring information on the road ahead to be travelled
during the predetermined time period comprises acquiring information from at least
one of the following on-board systems: a vision system, a Light Detection And Ranging
system, a RAdio Detection And Ranging system, and a digital map system.
[0056] The vehicle's motion along a future path on the road ahead during the predefined
time period is simulated.
[0057] In one embodiment the step of simulating the vehicle's motion along a future path
on the road ahead during the predefined time period comprises using a driver model
for modeling the driver behavior when driving the future path on the road ahead during
the predefined time period. The drivers control inputs are considered to be the wheel
angle at the front wheels δ and applied wheel torque
T, the braking behavior of the driver may be modeled as a PI controller with torque,
T as the control signal and desired longitudinal slip, κ as reference, and the steering
behavior of the driver may be modeled as a PID controller, with front wheel angle,
δ as control signal and the future geometrical path as reference.
[0058] In the above embodiment the step of simulating the vehicle's motion along a future
path on the road ahead during the predefined time period further comprises using a
vehicle model for modeling the vehicles yaw stability when driven the future path
on the road ahead by the driver model during the predefined time period. The vehicle
model level of detail in the modeled vehicle dynamics needs to be high enough to capture
relevant information about the stability of the vehicle. In one embodiment it is suggested
to use a double track vehicle model, with static load transfer. However, any vehicle
model providing a sufficient level of detail in the modeled vehicle dynamics to capture
relevant information about the stability of the vehicle may be used.
[0059] One or more indicators of the vehicles predicted yaw stability during the simulated
motion along the future path on the road ahead during the predefined time period are
calculated.
[0060] In one embodiment the step of calculating one or more indicators of the vehicles
predicted yaw stability during the simulated motion along the future path on the road
ahead during the predefined time period comprises calculating the maximum predicted
difference (Δψ̇
max) between a reference yaw rate (ψ̇
ref) and the vehicles predicted yaw rate (ψ̇), as described above.
[0061] The calculated indicators are evaluated to establish if the vehicle is about to lose
control.
[0062] In one embodiment the maximum predicted difference (Δψ̇
max) between a reference yaw rate (ψ̇
ref) and the vehicles predicted yaw rate (ψ̇) is compared to a threshold, which threshold
has been previously established through tuning.
[0063] If established that the vehicle is about to lose control, this is signaled to an
on-board yaw stability system. Upon receipt of such signaling that the vehicle is
about to lose control, the on-board yaw stability system may either take moderate
action, such as e.g. prepare the brakes for intervention or take immediate action,
such as e.g. controlling the vehicles speed by means of brakes or throttle or use
the brakes to create additional yaw moment. The signaled information may be used to
issue interventions by a separate yaw controller or as a weighted part in the control
error of a conventional yaw stability system.
[0064] The present invention also relates to a system of predictive yaw stability control
of a vehicle as described above and comprising means for performing the above described
steps.
[0065] In one embodiment the means for acquiring information on the road ahead to be travelled
during the predetermined time period comprises at least one of the following on-board
systems: a vision system, a Light Detection And Ranging system, a RAdio Detection
And Ranging system, and a digital map system.
[0066] The means for simulating the vehicle's motion along a future path on the road ahead
during the predefined time period may be implemented as the execution of software
on an on-board processing unit of a vehicle yaw stability system. These means comprises
a driver model for modeling the driver behavior when driving the future path on the
road ahead during the predefined time period, as well as a vehicle model for modeling
the vehicles yaw stability when driven the future path on the road ahead by the driver
model during the predefined time period.
[0067] Also the means for calculating one or more indicators of the vehicles predicted yaw
stability during the simulated motion along the future path on the road ahead during
the predefined time period may be implemented as the execution of software on an on-board
processing unit of a vehicle yaw stability system. This on-board processing unit may
be arranged to calculate the maximum predicted difference (Δψ̇
max) between a reference yaw rate (ψ̇
ref) and the vehicles predicted yaw rate (ψ̇).
[0068] The present invention also relates to an automotive vehicle comprising a system of
predictive yaw stability control of a vehicle as described above.
[0069] The invention is not limited to the above-described embodiments, but may be varied
within the scope of the following claims.
[0070] Thus, while there have been shown and described and pointed out fundamental novel
features of the invention as applied to a preferred embodiment thereof, it will be
understood that various omissions and substitutions and changes in the form and details
of the devices illustrated, and in their operation, may be made by those skilled in
the art. For example, it is expressly intended that all combinations of those elements
and/or method steps which perform substantially the same function in substantially
the same way to achieve the same results are within the scope of the invention. Moreover,
it should be recognized that structures and/or elements and/or method steps shown
and/or described in connection with any disclosed form or embodiment of the invention
may be incorporated in any other disclosed or described or suggested form or embodiment
as a general matter of design choice. It is the intention, therefore, to be limited
only as indicated by the scope of the claims appended hereto.
1. A method of predictive yaw stability control of a vehicle,
characterized in that it comprises the steps of:
initiating simulation starting from a measured state of the vehicle at that specific
time instant;
acquiring information on the road ahead to be travelled during a predetermined time
period;
simulating the vehicle's motion along a future path on the road ahead during the predefined
time period;
calculating one or more indicators of the vehicles predicted yaw stability during
the simulated motion along the future path on the road ahead during the predefined
time period;
evaluating the calculated indicators to establish if the vehicle is about to loose
control;
if established that the vehicle is about to lose control, signaling this to an on-board
yaw stability system.
2. A method according to claim 1,
characterized in that:
the step of acquiring information on the road ahead to be travelled during the predetermined
time period comprises acquiring information from at least one of the following on-board
systems: a vision system, a Light Detection And Ranging system, a RAdio Detection
And Ranging system, and a digital map system.
3. A method according to claim 1,
characterized in that:
the step of simulating the vehicle's motion along a future path on the road ahead
during the predefined time period comprises:
using a driver model for modeling the driver behavior when driving the future path
on the road ahead during the predefined time period;
using a vehicle model for modeling the vehicles yaw stability when driven the future
path on the road ahead by the driver model during the predefined time period.
4. A method according to any one of claims 1 to 3,
characterized in that:
the step of calculating one or more indicators of the vehicles predicted yaw stability
during the simulated motion along the future path on the road ahead during the predefined
time period comprises calculating the maximum predicted difference (Δψ̇max) between a reference yaw rate (ψ̇ref) and the vehicles predicted yaw rate (ψ̇).
5. A system of predictive yaw stability control of a vehicle,
characterized in that it comprises:
means for initiating simulation starting from a measured state of the vehicle at that
specific time instant;
means for acquiring information on the road ahead to be travelled during a predetermined
time period;
means for simulating the vehicle's motion along a future path on the road ahead during
the predefined time period;
means for calculating one or more indicators of the vehicles predicted yaw stability
during the simulated motion along the future path on the road ahead during the predefined
time period;
means for evaluating the calculated indicators to establish if the vehicle is about
to lose control;
means for, if established that the vehicle is about to lose control, signaling this
to an on-board yaw stability system.
6. A system according to claims 5,
characterized in that:
the means for acquiring information on the road ahead to be travelled during the predetermined
time period comprises at least one of the following on-board systems: a vision system,
a Light Detection And Ranging system, a RAdio Detection And Ranging system, and a
digital map system.
7. A system according to claim 5,
characterized in that:
the means for simulating the vehicle's motion along a future path on the road ahead
during the predefined time period comprises:
a driver model for modeling the driver behavior when driving the future path on the
road ahead during the predefined time period;
a vehicle model for modeling the vehicles yaw stability when driven the future path
on the road ahead by the driver model during the predefined time period.
8. A system according to claim 5,
characterized in that:
the means for calculating one or more indicators of the vehicles predicted yaw stability
during the simulated motion along the future path on the road ahead during the predefined
time period are arranged to calculate the maximum predicted difference (Δψ̇max) between a reference yaw rate (ψ̇ref) and the vehicles predicted yaw rate (ψ̇).
9. An automotive vehicle, characterized in that it comprises a system of predictive yaw stability control of a vehicle according
to any one of claims 5 to 8.